语言模型驱动的模拟病人,自动反馈病史采集:前瞻性研究

IF 3.2 Q1 EDUCATION, SCIENTIFIC DISCIPLINES
Friederike Holderried, Christian Stegemann-Philipps, Anne Herrmann-Werner, Teresa Festl-Wietek, Martin Holderried, Carsten Eickhoff, Moritz Mahling
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引用次数: 0

摘要

背景:虽然病史采集是诊断病情的基础,但由于资源限制,教授病史采集技能并提供反馈可能具有挑战性。因此,虚拟模拟病人和基于网络的聊天机器人已成为教育工具,最近人工智能(AI)的进步,如大型语言模型(LLM),增强了它们的真实性和提供反馈的潜力:在我们的研究中,我们旨在评估生成式预训练转换器(GPT)4 模型为医科学生在模拟病人病史采集中的表现提供结构化反馈的有效性:我们开展了一项前瞻性研究,让医科学生使用由 GPT 驱动的聊天机器人进行病史采集。为此,我们设计了一个聊天机器人来模拟病人的反应,并就学生病史采集的全面性提供即时反馈。我们对学生与聊天机器人的互动进行了分析,并将聊天机器人的反馈与人类评分员的反馈进行了比较。我们测量了评分者之间的可靠性,并进行了描述性分析,以评估反馈的质量:研究的大部分参与者都是医学院三年级的学生。我们的分析共包括 106 次对话中的 1894 对问答。在 99% 以上的案例中,GPT-4 的角色扮演和回答在医学上是可信的。GPT-4 与人类测评者之间的互测可靠性显示出 "几乎完美 "的一致性(Cohen κ=0.832)。一致性较低(κ结论:GPT 模型能有效地对医学生提供的病史采集对话进行结构化反馈。虽然我们发现了某些反馈类别的反馈特异性存在一些局限性,但与人类评分者的总体高度一致表明,LLM 可以成为医学教育的一个有价值的工具。因此,我们的研究结果提倡在医学培训中谨慎整合人工智能驱动的反馈机制,并强调了在此背景下使用 LLM 的重要方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Language Model-Powered Simulated Patient With Automated Feedback for History Taking: Prospective Study.

Background: Although history taking is fundamental for diagnosing medical conditions, teaching and providing feedback on the skill can be challenging due to resource constraints. Virtual simulated patients and web-based chatbots have thus emerged as educational tools, with recent advancements in artificial intelligence (AI) such as large language models (LLMs) enhancing their realism and potential to provide feedback.

Objective: In our study, we aimed to evaluate the effectiveness of a Generative Pretrained Transformer (GPT) 4 model to provide structured feedback on medical students' performance in history taking with a simulated patient.

Methods: We conducted a prospective study involving medical students performing history taking with a GPT-powered chatbot. To that end, we designed a chatbot to simulate patients' responses and provide immediate feedback on the comprehensiveness of the students' history taking. Students' interactions with the chatbot were analyzed, and feedback from the chatbot was compared with feedback from a human rater. We measured interrater reliability and performed a descriptive analysis to assess the quality of feedback.

Results: Most of the study's participants were in their third year of medical school. A total of 1894 question-answer pairs from 106 conversations were included in our analysis. GPT-4's role-play and responses were medically plausible in more than 99% of cases. Interrater reliability between GPT-4 and the human rater showed "almost perfect" agreement (Cohen κ=0.832). Less agreement (κ<0.6) detected for 8 out of 45 feedback categories highlighted topics about which the model's assessments were overly specific or diverged from human judgement.

Conclusions: The GPT model was effective in providing structured feedback on history-taking dialogs provided by medical students. Although we unraveled some limitations regarding the specificity of feedback for certain feedback categories, the overall high agreement with human raters suggests that LLMs can be a valuable tool for medical education. Our findings, thus, advocate the careful integration of AI-driven feedback mechanisms in medical training and highlight important aspects when LLMs are used in that context.

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来源期刊
JMIR Medical Education
JMIR Medical Education Social Sciences-Education
CiteScore
6.90
自引率
5.60%
发文量
54
审稿时长
8 weeks
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